OKTAL : Jurnal Ilmu Komputer dan Sains
Vol 3 No 06 (2024): OKTAL : Jurnal Ilmu Komputer Dan Sains

Implementasi Metode MTCNN (Multitask Cascaded Convolutional Neural Neteowk) Pada Sistem Absensi Berbasis Face Recognition

Mohd.Faizal Bin Laranti (Unknown)
Nurjaya (Unknown)



Article Info

Publish Date
05 Jun 2024

Abstract

Human facial expressions can describe a person's emotions, by knowing human facial expressions, the process of recognizing human emotions will be helped. For example is to recognize individual satisfaction of a service. One method that is well-known today for facial expression recognition systems is the Convolutional Neural Network (CNN). In this study, a CNN architecture will be built which has 8 convolution layers, with a depth of 32 layers. Almost all research on facial expression recognition has used datasets of non-Indonesian races. Therefore, the authors conducted an analysis of the non-Indonesian racial dataset with the Indonesian race dataset using the cross dataset technique. In this system the self- built CNN is compared with other popular CNN architectures. The results obtained from this study are the accuracy of the test data by 91.29%, sensitivity or recall or True Positive Rate (TPR) by 91.29%, precision or Positive Predictive Value (PPV) by 91,29%, and overall accuracy by 97.51%. Therefore, with a high recall value and precision, it means that the classes in the test data are handled perfectly by the model built.

Copyrights © 2024






Journal Info

Abbrev

oktal

Publisher

Subject

Astronomy Chemistry Computer Science & IT Electrical & Electronics Engineering Social Sciences

Description

1. Komputasi Lunak, 2. Sistem Cerdas Terdistribusi, Manajemen Basis Data, dan Pengambilan Informasi, 3. Komputasi evolusioner dan komputasi DNA/seluler/molekuler, 4. Deteksi kesalahan, 5. Sistem Energi Hijau dan Terbarukan, 6. Antarmuka Manusia, 7. Interaksi Manusia-Komputer, 8. Hibrida dan ...